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arxiv: 1703.10793 · v2 · pith:CL5UPCDFnew · submitted 2017-03-31 · 🪐 quant-ph

Implementing a distance-based classifier with a quantum interference circuit

classification 🪐 quant-ph
keywords quantumcircuitclassifieralgorithmsanalysedistance-basedinterferencelearning
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Lately, much attention has been given to quantum algorithms that solve pattern recognition tasks in machine learning. Many of these quantum machine learning algorithms try to implement classical models on large-scale universal quantum computers that have access to non-trivial subroutines such as Hamiltonian simulation, amplitude amplification and phase estimation. We approach the problem from the opposite direction and analyse a distance-based classifier that is realised by a simple quantum interference circuit. After state preparation, the circuit only consists of a Hadamard gate as well as two single-qubit measurements, and computes the distance between data points in quantum parallel. We demonstrate the proof-of-principle using the IBM Quantum Experience and analyse the performance of the classifier with numerical simulations, showing that it classifies surprisingly well for simple benchmark tasks.

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